Improving phenology predictions for sparsely observed species through fusion of botanical collections and citizen-science

Lucien Fitzpatrick , Perry J. Giambuzzi , Alena Spreitzer , Brendon Reidy , Shannon M. Still , Christine R. Rollinson
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引用次数: 1

Abstract

Describing patterns of plant phenology through models has been critical for quantifying species responses to climate change and forecasting future vegetation impacts. However, many species remain unincluded in large analyses because they are poorly represented in the large public or citizen science datasets that form the foundation of these efforts. Botanical living collections are often key resources that facilitate study of rare and sparsely observed species, but alone are insufficient to predict species phenology throughout their observed ranges. We investigate whether predictions for rare and data-poor species observed at a single site can be improved by leveraging observations of similar taxa observed at multiple locations. We combined observations of oak (Quercus) budburst and leaf out from one botanical garden with a subset of congeneric species observed in the USA-NPN citizen science dataset using Bayesian hierarchical modeling. We show that including USA-NPN observations into a simple thermal time model of budburst and leaf out did not reduce geographic bias in model predictions over models parameterized only with single-site observations. However, using USA-NPN data to add non-taxonomic spatial covariates to the thermal time model improved model performance for all species, including those only observed at a single site. Living collections at botanical gardens provide valuable opportunities to observe rare or understudied species, but are limited in geographic scope. National-scale citizen science observations that capture the spatial variability of related or ecologically similar taxa can be combined with living collections data to improve predictions of species of conservation concern across their native range.

通过植物收集和公民科学的融合改进对稀疏观测物种的物候预测
通过模型描述植物物候模式对于量化物种对气候变化的响应和预测未来植被影响至关重要。然而,许多物种仍未包括在大型分析中,因为它们在构成这些努力基础的大型公共或公民科学数据集中的代表性很差。植物活体标本通常是促进稀有和稀疏观测物种研究的关键资源,但仅凭植物活体标本不足以预测整个观测范围内的物种物候。我们研究了是否可以通过利用在多个地点观察到的相似类群的观察来改进对单个地点观察到的稀有和数据贫乏物种的预测。我们使用贝叶斯层次模型将一个植物园的橡树(栎)芽和叶子的观测结果与美国- npn公民科学数据集中观察到的同类物种的子集相结合。研究表明,将美国- npn观测数据纳入一个简单的芽和叶期热时间模型,与仅用单站点观测参数化的模型相比,并没有减少模型预测中的地理偏差。然而,使用USA-NPN数据在热时间模型中添加非分类学空间协变量可以提高所有物种的模型性能,包括仅在单个站点观察到的物种。植物园的活体标本为观察稀有或未被充分研究的物种提供了宝贵的机会,但其地理范围有限。国家范围内的公民科学观测可以捕捉相关或生态相似分类群的空间变异性,并与活体收集数据相结合,以改善对其原生范围内受保护物种的预测。
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